TimeTuner: Diagnosing Time Representations for Time-Series Forecasting with Counterfactual Explanations

07/19/2023
by   Jianing Hao, et al.
0

Deep learning (DL) approaches are being increasingly used for time-series forecasting, with many efforts devoted to designing complex DL models. Recent studies have shown that the DL success is often attributed to effective data representations, fostering the fields of feature engineering and representation learning. However, automated approaches for feature learning are typically limited with respect to incorporating prior knowledge, identifying interactions among variables, and choosing evaluation metrics to ensure that the models are reliable. To improve on these limitations, this paper contributes a novel visual analytics framework, namely TimeTuner, designed to help analysts understand how model behaviors are associated with localized correlations, stationarity, and granularity of time-series representations. The system mainly consists of the following two-stage technique: We first leverage counterfactual explanations to connect the relationships among time-series representations, multivariate features and model predictions. Next, we design multiple coordinated views including a partition-based correlation matrix and juxtaposed bivariate stripes, and provide a set of interactions that allow users to step into the transformation selection process, navigate through the feature space, and reason the model performance. We instantiate TimeTuner with two transformation methods of smoothing and sampling, and demonstrate its applicability on real-world time-series forecasting of univariate sunspots and multivariate air pollutants. Feedback from domain experts indicates that our system can help characterize time-series representations and guide the feature engineering processes.

READ FULL TEXT

page 3

page 4

page 6

page 8

research
06/15/2023

Deep Learning for Energy Time-Series Analysis and Forecasting

Energy time-series analysis describes the process of analyzing past ener...
research
10/14/2020

VEST: Automatic Feature Engineering for Forecasting

Time series forecasting is a challenging task with applications in a wid...
research
06/02/2022

Generating Sparse Counterfactual Explanations For Multivariate Time Series

Since neural networks play an increasingly important role in critical se...
research
06/09/2023

Self-Interpretable Time Series Prediction with Counterfactual Explanations

Interpretable time series prediction is crucial for safety-critical area...
research
03/05/2020

What went wrong and when? Instance-wise Feature Importance for Time-series Models

Multivariate time series models are poised to be used for decision suppo...
research
07/19/2022

Towards Robust Multivariate Time-Series Forecasting: Adversarial Attacks and Defense Mechanisms

As deep learning models have gradually become the main workhorse of time...
research
01/27/2023

Learning Informative Representation for Fairness-aware Multivariate Time-series Forecasting: A Group-based Perspective

Multivariate time series (MTS) forecasting has penetrated and benefited ...

Please sign up or login with your details

Forgot password? Click here to reset